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Articles - Page 118
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Adversarial Machine Learning 101: How Evasion Attacks Fool AI Models and How to Defend
Learn how adversarial machine learning evasion attacks manipulate inputs at inference time to fool AI models, plus practical defenses like robust training and monitoring.
AI Security Fundamentals (2026): Core Concepts, Threat Models, and Key Controls
Learn AI security fundamentals for 2026: core concepts, threat models, and key controls including prompt defenses, zero trust, monitoring, and a secure AI development lifecycle.
Top Tools to Learn AI Security: Open-Source Frameworks for Adversarial ML, Red Teaming, and Monitoring
Explore top open-source AI security tools for adversarial ML, red teaming, and monitoring, including ART, MITRE ATLAS, CALDERA, Atomic Red Team, and URET.
AI Security Certification Guide: How to Choose the Right Credential and Prepare for the Exam
Learn how to choose an AI security certification by role, cost, and framework fit, plus practical exam prep tactics for hands-on and governance-focused credentials.
AI Security Projects for Practice: 10 Hands-On Labs for Prompt Injection, Data Poisoning, and Model Hardening
Build AI security skills with 10 hands-on labs covering prompt injection, data poisoning, backdoors, and model hardening with practical defenses and testing.
AI Security Roadmap: A Step-by-Step Learning Path from Fundamentals to Model Defense
Learn a practical AI security roadmap, from fundamentals and data protection to red-teaming, runtime monitoring, governance, and agentic model defenses.
AI Security for Beginners: Core Threats, Terminology, and Best Practices in 2026
Learn AI security for beginners in 2026: core threats like poisoning and prompt injection, key terms, and practical best practices for governance, SecDevOps, and monitoring.
Beginner's Guide to Adversarial Machine Learning: Evasion, Poisoning, and Model Inversion Explained
Learn the basics of adversarial machine learning, including evasion, poisoning, and model inversion attacks, plus practical defenses for securing ML systems.
How to Secure AI Models in Production: Hardening Pipelines, APIs, and Inference Endpoints
Learn how to secure AI models in production by hardening pipelines, protecting AI APIs, and safeguarding inference endpoints against extraction, injection, and abuse.
AI Security Fundamentals in 2026: Threats, Controls, and a Secure AI Lifecycle
Learn AI security fundamentals in 2026: key threats like prompt injection and data poisoning, essential controls, and a secure AI lifecycle checklist for enterprises.
What Is MCP in AI?
Learn what MCP in AI is, how the Model Context Protocol works, and why it matters for real-time data access, tool use, automation, and governance.
MCP vs Function Calling vs Plugins
Compare MCP vs function calling vs plugins for LLM tool integration. Learn tradeoffs in portability, security, scalability, and when hybrid patterns work best.